Real Coded Genetic Algorithm based dynamic Congestion Management in open power markets

E. Muneender, D. Vinodkumar
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引用次数: 6

Abstract

The first real time task of ISO focuses on Static Congestion Management (SCM), i.e. the congestion caused by the thermal and voltage limits. When power systems undergoes discrete changes in system configuration due to outage and contingencies, the system dynamic performance will be affected and the system stability might be threatened. In this respect, the second real time task of ISO focuses on the utilization of available resources to maintain system security and reliability. This process is called Dynamic Congestion Management (DCM). The DCM refers to the process that secures stability of the post fault power system in an economic manner. The objective function of the DCM model used in this paper has been formulated as a constrained nonlinear optimization problem. This proposes the application of Real Coded Genetic Algorithm (RCGA) for solving the constrained nonlinear DCM model to assess the generation re-scheduling for minimizing the objective function. In the proposed RCGA method, owing to the adaptive capability, Simulated Binary Crossover (SBX) and Tournament selection is used as selection mechanism in order to avoid premature convergence. To establish the linear inequality of transmission limit constraints and transient stability constraints, generator shift factor and trajectory sensitivities are calculated. The algorithm's performance has been examined over 3-machine, 9-bus WSCC system.
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基于真实编码遗传算法的开放电力市场动态拥塞管理
ISO的第一个实时任务侧重于静态拥塞管理(SCM),即由热和电压限制引起的拥塞。当电力系统因停电和突发事件而发生系统结构的离散变化时,会影响系统的动态性能,威胁系统的稳定性。在这方面,ISO的第二个实时任务侧重于利用可用资源来维护系统的安全性和可靠性。这个过程称为动态拥塞管理(DCM)。DCM是指以经济的方式确保故障后电力系统稳定的过程。本文所采用的DCM模型的目标函数被表述为一个有约束的非线性优化问题。提出了将实数编码遗传算法(RCGA)应用于求解约束非线性DCM模型,以评估以目标函数最小为目标的发电重调度。在该方法中,由于具有较强的自适应能力,采用了模拟二进制交叉(SBX)和锦标赛选择作为选择机制,以避免过早收敛。为了建立输电极限约束和暂态稳定约束的线性不等式,计算了发电机位移因子和轨迹灵敏度。在3机9总线WSCC系统上验证了该算法的性能。
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